SourcingXPress
Website:
sourcingxpress.com
Job details:
Company: Hiredahead.com
LinkedIn: Visit LinkedIn
Business Type: Startup
Company Type: Product
Business Model: B2B
Funding Stage: Pre-seed
Industry: Information Technology
Salary Range: ₹ 40-50 Lacs PA
Job Description
This is a Permanent Role with a Valued Clients of Hireahead.com
Lead a small, high-velocity team to design, build, and ship ML and GenAI products end-to-end, from problem framing and modeling to scalable deployment and monitoring.
Responsibilities
- Own the technical roadmap for ML/GenAI initiatives and align it with product goals and delivery timelines.
- Lead LLM workflow and agentic system design, including retrieval, tool-use, and evaluation pipelines.
- Guide model development using PyTorch and HuggingFace; enforce code quality, testing, and model evaluation standards.
- Oversee MLOps: CI/CD for models, API design, containerization, orchestration, and cost/performance optimization on AWS.
- Collaborate with product, data, and infra teams; run experiments, A/B tests and error analysis.
- Mentor engineers, conduct code/model reviews, and grow team capabilities.
Must-Have Skills
- At least 4 years of experience with a minimum of one year in technical leadership leading projects or teams.
- General AI/ML Team Lead requirements: roadmap ownership, sprint planning, stakeholder communication, mentoring, and setting engineering best practices.
- Strong Python understanding: idiomatic code, testing, packaging, async I/O, performance profiling.
- Strong ML, DL, and GenAI understanding: supervised/unsupervised learning, transformer architectures, prompt engineering, evaluation, and safety/guardrails.
- Experience building LLM-based workflows and agents, including retrieval (RAG), tools, memory, and evaluation loops.
- Hands-on experience with LangChain, HuggingFace, PyTorch, Neo4j, Milvus, and AWS for scalable, production-grade systems.
- MLOps experience: model deployments, API development, observability, infra management (containers, orchestration, IaC), and data/version governance.
Preferred Skills
- Knowledge graph design and Neo4j schema modeling for semantic retrieval and reasoning.
- LLM fine-tuning with deployment to production: LoRA/QLoRA, PEFT, quantization, evaluation, rollback strategies, and cost optimization.
- Startup experience: comfort with ambiguity, rapid iteration, and owning outcomes across the stack.
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